Overview
StemSight Scout is a tool developed by the Jackson Laboratory that focus their research on how to utilize high-throughput data sources to understand biology at multiple levels.They contend that the past decade has shown an increase in experimental techniques and resources, however, the rate at which data are translated into knowledge is progressing much slower than the rate of data generation. To help build connections, the lab specializes in the development of algorithms for the analysis, exploration, and visualization of data. In the case of the Jackson Laboratory, a visualization such as StemSight scout can help understand the mechanisms of abnormal cell replication found in cancer. Furthermore, the visualization has proven to be a key tool for finding the genes involved during this process [1] of replication.
StemSight scout allows for the exploration of potential similarities between genes. The underlying data merges information from literature with information taken from various experiments. Ultimately, researchers can quickly narrow their research to one specific gene for exploration which can further be examined in the lab and consequently allow for efficient experimentation. Since StemSight is public, other researchers can access the data which can help expedite solutions to be found.
The visualization helps researchers discover information that might otherwise be difficult to explore without the visualization. The team led by Professor Matthew Hibbs, study stem cells which are able to divide and differentiate into various cell types. The group’s interest lies in the process of self-renewal, as this process might contain the answers for which, many scientists suspect is key to the understanding of how cancers form. With a map of the human genome, researchers have yet to discover what function the majority of these genes accomplish and or how they interact with each other. By combining known studies from literature with analysis from experiments, StemSight scout helps determine useful relationships. The output of one visual display shows two different types of relationships. Those that are known to be true, genes inferred to be functionally based on classical research, and those that have yet to be tested, based on inferences from over 800 different analyses used to determine similarities between genes[2] . Based on probabilistic functional relationship, researchers can discover unusual genes and gene products that are likely related to a specific gene of interest.
To begin, the researcher enters the official gene symbol for the gene of interest and click Fetch.StemSight scout will retrieve the genes inferred to be functionally related to the user’s gene of interest. Panel lists (fig. 1, right) tracks search history,and lists all genes in the network display, and show curated gene sets associated with network participants. Edge color indicates the strength of the inferred functional relationship between genes. Node color indicates a known documented relationship (fig. 1). Users can click on any edge to access detailed information on the strength of the predicted relationship between pairs of genes in the network and review data sets that support that edge. From the ‘edge detail’ window, the user can open the literature references in PubMed. As all data corresponds with literature substantiated by scholarly, peer reviewed journals, this may be one of the strongest assets of StemSight scout. After all, what good is data if there’s no credible source to back it up?
Example:
The gene Pou5f1 plays a significant role in the self-renewal process.
fig. 2
The ORANGE lines denote connections that are recognized from scientific literature. TheGREENlines denote connections that are ‘inferred’ from experimentation. A researcher looking at the display might consider exploring gene Gbx2 to determine its role in the self-renewal process (fig. 2).
Issues & Recommendations
While the interface appears to be minimalist and simplistic in design, the developers opted to make the visualization ‘hyper-dynamic’. When the user initiates a new search, the visual is in constant movement until it settles into a static state. This not only wastes time, but can also have a dizzying effect. The option to view in two-dimensionality and three- dimensionality had no functional purpose – if anything, the three dimensional view was difficult to look at.
fig. 3 When controls are in view, the legend for the Edge and Node is obstructed
Considering that the visualization is intended for research purposes, the additional eye candy did more harm than good. During my exploration, StemSight scout had persistent glitches with the views control. During initial start-up, the page displays all controls for views at the bottom edge (View in 3D, Genes & SRC, Edges & Inf.), in addition to sliders that control edges per node and minimum inference score.If the user opted to hide controls and reactivate controls later, the sliders for the node and inference can no longer be seen. Additionally, when controls are in view, the legend for the Edge and Node is obstructed (fig. 3).
Concluding Thoughts
StemSight Scout is an effective tool for navigating through an abundance of data that can be used to explore and discover relationships between genes that can one day help find the cure for cancer and other diseases. Furthermore, the huge database and or repositories from which the program harvests information such as Pub Med underscores the importance of credible information to substantiate the visualization. While glitches with the interface present minor problems, the benefit of having this type of visualization available to researchers will be immeasurable.
Overview
StemSight Scout is a tool developed by the Jackson Laboratory that focus their research on how to utilize high-throughput data sources to understand biology at multiple levels.They contend that the past decade has shown an increase in experimental techniques and resources, however, the rate at which data are translated into knowledge is progressing much slower than the rate of data generation. To help build connections, the lab specializes in the development of algorithms for the analysis, exploration, and visualization of data. In the case of the Jackson Laboratory, a visualization such as StemSight scout can help understand the mechanisms of abnormal cell replication found in cancer. Furthermore, the visualization has proven to be a key tool for finding the genes involved during this process [1] of replication.
StemSight scout allows for the exploration of potential similarities between genes. The underlying data merges information from literature with information taken from various experiments. Ultimately, researchers can quickly narrow their research to one specific gene for exploration which can further be examined in the lab and consequently allow for efficient experimentation. Since StemSight is public, other researchers can access the data which can help expedite solutions to be found.
The visualization helps researchers discover information that might otherwise be difficult to explore without the visualization. The team led by Professor Matthew Hibbs, study stem cells which are able to divide and differentiate into various cell types. The group’s interest lies in the process of self-renewal, as this process might contain the answers for which, many scientists suspect is key to the understanding of how cancers form. With a map of the human genome, researchers have yet to discover what function the majority of these genes accomplish and or how they interact with each other. By combining known studies from literature with analysis from experiments, StemSight scout helps determine useful relationships. The output of one visual display shows two different types of relationships. Those that are known to be true, genes inferred to be functionally based on classical research, and those that have yet to be tested, based on inferences from over 800 different analyses used to determine similarities between genes[2] . Based on probabilistic functional relationship, researchers can discover unusual genes and gene products that are likely related to a specific gene of interest.
To begin, the researcher enters the official gene symbol for the gene of interest and click Fetch.StemSight scout will retrieve the genes inferred to be functionally related to the user’s gene of interest. Panel lists (fig. 1, right) tracks search history,and lists all genes in the network display, and show curated gene sets associated with network participants. Edge color indicates the strength of the inferred functional relationship between genes. Node color indicates a known documented relationship (fig. 1). Users can click on any edge to access detailed information on the strength of the predicted relationship between pairs of genes in the network and review data sets that support that edge. From the ‘edge detail’ window, the user can open the literature references in PubMed. As all data corresponds with literature substantiated by scholarly, peer reviewed journals, this may be one of the strongest assets of StemSight scout. After all, what good is data if there’s no credible source to back it up?
Example:
The gene Pou5f1 plays a significant role in the self-renewal process.
Issues & Recommendations
While the interface appears to be minimalist and simplistic in design, the developers opted to make the visualization ‘hyper-dynamic’. When the user initiates a new search, the visual is in constant movement until it settles into a static state. This not only wastes time, but can also have a dizzying effect. The option to view in two-dimensionality and three- dimensionality had no functional purpose – if anything, the three dimensional view was difficult to look at.
Concluding Thoughts
StemSight Scout is an effective tool for navigating through an abundance of data that can be used to explore and discover relationships between genes that can one day help find the cure for cancer and other diseases. Furthermore, the huge database and or repositories from which the program harvests information such as Pub Med underscores the importance of credible information to substantiate the visualization. While glitches with the interface present minor problems, the benefit of having this type of visualization available to researchers will be immeasurable.
Noly Lomigo